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Assessment of false discovery rate control in tandem mass spectrometry analysis using entrapment

Bo Wen, Jack Freestone, Michael Riffle, Michael J. MacCoss, William Stafford Noble, Uri Keich

2025Nature Methods36 citationsDOIOpen Access PDF

Abstract

A critical challenge in mass spectrometry proteomics is accurately assessing error control, especially given that software tools employ distinct methods for reporting errors. Many tools are closed-source and poorly documented, leading to inconsistent validation strategies. Here we identify three prevalent methods for validating false discovery rate (FDR) control: one invalid, one providing only a lower bound, and one valid but under-powered. The result is that the proteomics community has limited insight into actual FDR control effectiveness, especially for data-independent acquisition (DIA) analyses. We propose a theoretical framework for entrapment experiments, allowing us to rigorously characterize different approaches. Moreover, we introduce a more powerful evaluation method and apply it alongside existing techniques to assess existing tools. We first validate our analysis in the better-understood data-dependent acquisition setup, and then, we analyze DIA data, where we find that no DIA search tool consistently controls the FDR, with particularly poor performance on single-cell datasets.

Topics & Concepts

False discovery rateComputer scienceData miningProteomicsTandem mass spectrometrySoftwareMass spectrometryChemistryChromatographyBiochemistryProgramming languageGeneAdvanced Proteomics Techniques and ApplicationsMass Spectrometry Techniques and ApplicationsMetabolomics and Mass Spectrometry Studies
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